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Research on resource allocation management of industrial supply chain based on blockchain

Yulong Wan and Xiaoying Bai

International Journal of Manufacturing Technology and Management, 2023, vol. 37, issue 3/4, 302-314

Abstract: In order to improve the efficiency and effect of industrial supply chain resource allocation, this paper studies the resource allocation method of industrial supply chain based on block chain. This method analyses the coupling relationship between block chain and supply chain resource allocation management, updates the industrial supply chain resource pheromone, constructs the industrial supply chain resource allocation model through block chain technology, and realises the industrial supply chain resource allocation management by combining the optimised simulated annealing algorithm. The experimental results show that the cost consumption rate of the proposed method is only 32.5%, the reliability is as high as 95.2%, and the configuration time is only 17.8 s. Therefore, the proposed method has good resource allocation effect and improves the configuration efficiency.

Keywords: blockchain technology; simulated annealing algorithm; industrial supply chain; supply chain resources; resource allocation model. (search for similar items in EconPapers)
Date: 2023
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